Hybrid Trust-Aware Model for Personalized Top-N Recommendation

Arpit Merchant, Navjyoti Singh
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引用次数: 4

Abstract

Due to the large quantity and diversity of content being easily available to users, recommender systems (RS) have become an integral part of nearly every online system. They allow users to resolve the information overload problem by proactively generating high-quality personalized recommendations. Trust metrics help leverage preferences of similar users and have led to improved predictive accuracy which is why they have become an important consideration in the design of RSs. We argue that there are additional aspects of trust as a human notion, that can be integrated with collaborative filtering techniques to suggest to users items that they might like. In this paper, we present an approach for the top-N recommendation task that computes prediction scores for items as a user specific combination of global and local trust models to capture differences in preferences. Our experiments show that the proposed method improves upon the standard trust model and outperforms competing top-N recommendation approaches on real world data by upto 19%.
个性化Top-N推荐的混合信任感知模型
由于用户可以很容易地获得大量多样的内容,推荐系统(RS)已经成为几乎每个在线系统中不可或缺的一部分。它们允许用户通过主动生成高质量的个性化推荐来解决信息过载问题。信任指标有助于利用相似用户的偏好,并提高预测的准确性,这就是为什么它们成为RSs设计中的重要考虑因素。我们认为,作为一种人类概念,信任还有其他方面,可以与协同过滤技术相结合,向用户推荐他们可能喜欢的项目。在本文中,我们提出了一种top-N推荐任务的方法,该方法将项目的预测分数作为用户特定的全局和局部信任模型的组合来计算,以捕获偏好的差异。我们的实验表明,所提出的方法改进了标准信任模型,并且在现实世界数据上优于竞争的top-N推荐方法高达19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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